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Enhancing evolutionary instance selection algorithms by means of fuzzy rough set based feature selection

机译:通过基于模糊粗糙集的特征选择增强进化实例选择算法

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摘要

In recent years, fuzzy rough set theory has emerged as a suitable tool for performing feature selection. Fuzzy rough feature selection enables us to analyze the discernibility of the attributes, highlighting the most attractive features in the construction of classifiers. However, its results can be enhanced even more if other data reduction techniques, such as instance selection, are considered. In this work, a hybrid evolutionary algorithm for data reduction, using both instance and feature selection, is presented. A global process of instance selection, carried out by a steady-state genetic algorithm, is combined with a fuzzy rough set based feature selection process, which searches for the most interesting features to enhance both the evolutionary search process and the final preprocessed data set. The experimental study, the results of which have been contrasted through nonparametric statistical tests, shows that our proposal obtains high reduction rates on training sets which greatly enhance the behavior of the nearest neighbor classifier.
机译:近年来,模糊粗糙集理论已经成为执行特征选择的合适工具。模糊粗糙特征选择使我们能够分析属性的可区分性,突出显示分类器构造中最吸引人的特征。但是,如果考虑其他数据缩减技术(例如实例选择),则其结果可以得到更大的增强。在这项工作中,提出了一种混合进化算法,用于减少数据,同时使用实例和特征选择。由稳态遗传算法执行的全局实例选择过程与基于模糊粗糙集的特征选择过程相结合,该过程选择最有趣的特征以增强进化搜索过程和最终的预处理数据集。实验研究(通过非参数统计检验将其结果进行了对比)表明,我们的建议在训练集上获得了很高的降低率,这极大地增强了最近邻分类器的行为。

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